
ECG Denoising Methodology using Intrinsic Time Scale Decomposition and Adaptive Switching Mean Filter
Author(s) -
Dr Battula Tirumala Krishna,
Putti Siva Kameswaari
Publication year - 2021
Publication title -
indian journal of signal processing (ijsp)
Language(s) - English
Resource type - Journals
ISSN - 2582-8320
DOI - 10.35940/ijsp.b1005.051221
Subject(s) - computer science , thresholding , artificial intelligence , metric (unit) , filter (signal processing) , noise reduction , wavelet , adaptive filter , matlab , pattern recognition (psychology) , noise (video) , discrete wavelet transform , wavelet transform , computer vision , engineering , algorithm , operations management , image (mathematics) , operating system
Electrocardiogram (ECG) is a widely employed tool for the analysis of cardiac disorders. A clean ECG is often desired for proper treatment of cardiac ailments. However, in the real scenario, ECG signals are corrupted with various noises during acquisition and transmission. In this article, an efficient ECG de-noising methodology using combined intrinsic time scale decomposition (ITD) and adaptive switching mean filter (ASMF) is proposed. The standard performance metric namely output SNR improvement measure the efficacy of the proposed technique at various signal to noise ratio (SNR). The proposed de-noising methodology is compared with other existing ECG de-noising approaches. A detail qualitative and quantitative study and analysis indicate that the proposed technique can be used as an effective tool for de-noising of ECG signals and hence can serve for better diagnostic in computer-based automated medical system. The performance of the proposed work is compared with existing ECG de-noising techniques namely wavelet soft thresholding based filter (DWT) [16], EMD with DWT technique [18], DWT with ADTF technique [19]. The effectiveness of the presented work has been evaluated in both qualitative and quantitative analysis. All the simulations are carried out using MATLAB software environment.